Department of Electronics and Information Engineering, Harbin Institute of Technology Shenzhen, Shenzhen 518055, China.
Department of Critical Care Medicine, University of Pittsburgh, Pittsburgh, PA 15261, USA.
Sensors (Basel). 2020 Nov 17;20(22):6558. doi: 10.3390/s20226558.
: There are currently no effective and accurate blood loss volume (BLV) estimation methods that can be implemented in operating rooms. To improve the accuracy and reliability of BLV estimation and facilitate clinical implementation, we propose a novel estimation method using continuously monitored photoplethysmography (PPG) and invasive arterial blood pressure (ABP). Forty anesthetized York Pigs (31.82 ± 3.52 kg) underwent a controlled hemorrhage at 20 mL/min until shock development was included. Machine-learning-based BLV estimation models were proposed and tested on normalized features derived by vital signs. The results showed that the mean ± standard deviation (SD) for estimating BLV against the reference BLV of our proposed random-forest-derived BLV estimation models using PPG and ABP features, as well as the combination of ABP and PPG features, were 11.9 ± 156.2, 6.5 ± 161.5, and 7.0 ± 139.4 mL, respectively. Compared with traditional hematocrit computation formulas (estimation error: 102.1 ± 313.5 mL), our proposed models outperformed by nearly 200 mL in SD. This is the first attempt at predicting quantitative BLV from noninvasive measurements. Normalized PPG features are superior to ABP in accurately estimating early-stage BLV, and normalized invasive ABP features could enhance model performance in the event of a massive BLV.
目前,在手术室中还没有能够实施的有效且准确的失血量(BLV)估计方法。为了提高 BLV 估计的准确性和可靠性,并便于临床实施,我们提出了一种使用连续监测光体积描记法(PPG)和有创动脉血压(ABP)的新估计方法。四十只麻醉的约克猪(31.82±3.52kg)以 20mL/min 的速度进行控制性出血,直至发生休克。提出了基于机器学习的 BLV 估计模型,并在源自生命体征的归一化特征上进行了测试。结果表明,使用 PPG 和 ABP 特征以及 ABP 和 PPG 特征组合的随机森林衍生 BLV 估计模型,估计 BLV 与参考 BLV 的平均值±标准偏差(SD)分别为 11.9±156.2、6.5±161.5 和 7.0±139.4mL。与传统的血细胞比容计算公式(估计误差:102.1±313.5mL)相比,我们提出的模型在 SD 方面的误差接近 200mL。这是首次尝试从非侵入性测量中预测定量 BLV。归一化的 PPG 特征在准确估计早期 BLV 方面优于 ABP,而归一化的有创 ABP 特征在发生大量 BLV 时可以增强模型性能。